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Detecting Extraneous Content in Podcasts

机译:检测播客中的无关内容

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摘要

Podcast episodes often contain material extraneous to the main content, such as advertisements, interleaved within the audio and the written descriptions. We present classifiers that leverage both textual and listening patterns in order to detect such content in podcast descriptions and audio transcripts. We demonstrate that our models are effective by evaluating them on the downstream task of podcast summarization and show that we can sub-stantively improve ROUGE scores and reduce the extraneous content generated in the summaries.
机译:播客剧集通常包含主内容的材料,例如广告,在音频和书面描述内交错。 我们呈现利用文本和侦听模式的分类器,以便在播客描述和音频成绩单中检测此类内容。 我们证明,我们的模型通过对播客摘要的下游任务进行评估,表明我们可以逐渐改善胭脂评分并减少摘要中产生的外来内容。

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